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Overview of Bayesian sequential Monte Carlo methods for group and extended object tracking

机译:用于组和扩展对象跟踪的贝叶斯顺序蒙特卡洛方法概述

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摘要

This work presents the current state-of-the-art in techniques for tracking a number of objects moving in a coordinated and interacting fashion. Groups are structured objects characterized with particular motion patterns. The group can be comprised of a small number of interacting objects (e.g. pedestrians, sport players, convoy of cars) or of hundreds or thousands of components such as crowds of people. The group object tracking is closely linked with extended object tracking but at the same time has particular features which differentiate it from extended objects. Extended objects, such as in maritime surveillance, are characterized by their kinematic states and their size or volume. Both group and extended objects give rise to a varying number of measurements and require trajectory maintenance. An emphasis is given here to sequential Monte Carlo (SMC) methods and their variants. Methods for small groups and for large groups are presented, including Markov Chain Monte Carlo (MCMC) methods, the random matrices approach and Random Finite Set Statistics methods. Efficient real-time implementations are discussed which are able to deal with the high dimensionality and provide high accuracy. Future trends and avenues are traced.
机译:这项工作介绍了用于跟踪以协调和交互方式移动的许多对象的最新技术。组是具有特定运动模式特征的结构化对象。该组可以由少量的交互对象(例如行人,运动玩家,车队)或成百上千的组件(例如人群)组成。组对象跟踪与扩展对象跟踪紧密联系,但是同时具有使扩展对象与扩展对象区分开的特殊功能。诸如海上监视中的扩展对象以其运动状态及其大小或体积为特征。分组对象和扩展对象都导致变化的测量数量,并且需要轨迹维护。这里重点介绍了顺序蒙特卡洛(SMC)方法及其变体。提出了针对小群体和大群体的方法,包括马尔可夫链蒙特卡罗(MCMC)方法,随机矩阵方法和随机有限集统计方法。讨论了能够处理高维度并提供高精度的高效实时实现。追踪未来的趋势和途径。

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